Optimal Predictions in Everyday Cognition: The Wisdom of Individuals or Crowds?
Cognitive Science 32: 1133-1147
by Michael C. Mozer, Harold Pashler and Hadjar Homaei
Griffiths and Tenenbaum (2006) asked individuals to make predictions
about the duration or extent of everyday events (e.g., cake baking
times), and reported that predictions were optimal, employing Bayesian
inference based on veridical prior distributions. Although the
predictions conformed strikingly to statistics of the world, they
reflect averages over many individuals. On the conjecture that the
accuracy of the group response is chiefly a consequence of aggregating
across individuals, we constructed simple, heuristic approximations to
the Bayesian model premised on the hypothesis that individuals have
access merely to a sample of k instances drawn from the
relevant distribution. The accuracy of the group response reported by
Griffiths and Tenenbaum could be accounted for by supposing that
individuals each utilize only two instances. Moreover, the variability
of the group data is more consistent with this small-sample hypothesis
than with the hypothesis that people utilize veridical or nearly
veridical representations of the underlying prior distributions. Our
analyses lead to a qualitatively different view of how individuals
reason from past experience than the view espoused by Griffiths and
Tenenbaum.
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